MTBLS754: Untargeted food contaminant detection using UHPLC-HRMS combined with multivariate analysis: Feasibility study on tea (Dataset 2 - Validation)

DOI

Powerful data pretreatment strategies inspired from the field of metabolomics were adapted to chemical food safety context to enable samples discrimination by multivariate methods based on low abundance ions. A highly automated workflow was produced. The open-source XCMS package was used and efficient data filtration strategies were set up. Data were treated using Independent Components Analysis, and data mining strategies developed to automatically detect and annotate ions of low abundance by coupling blind data exploration strategies with a broad scale database approach. Our method was efficient in discriminating tea samples based on their contamination levels (even at 10µg/kg) and detecting unexpected impurities in the spiking mix. Several “tracer” contaminants were considered, covering a broad range of physicochemical properties and structural diversity with overall 66% detected and annotated blindly. The methodology was successfully applied to a data set exhibiting only 3 “tracer” contaminants (at 50µg/kg) and more product diversity.

Dataset 2 with 2 teas spiked with 3 contaminants and referred to as the Validation datase is reported in the current study MTBLS754. Dataset 1 with 1 tea spiked with 32 contaminants and referred to as the Development dataset is reported in MTBLS752.

Identifier
DOI https://doi.org/10.57745/ZJMU8K
Metadata Access https://entrepot.recherche.data.gouv.fr/oai?verb=GetRecord&metadataPrefix=oai_datacite&identifier=doi:10.57745/ZJMU8K
Provenance
Creator Cladière, Mathieu ORCID logo; Delaporte, Grégoire ORCID logo; Camel, Valérie (ORCID: 0000-0001-6679-733X); Jouand-Rimbaud Bouveresse, Delphine ORCID logo
Publisher Recherche Data Gouv
Contributor CLADIERE, MATHIEU; UMR0782 SayFood; Entrepôt Recherche Data Gouv; Metabolights
Publication Year 2026
Rights etalab 2.0; info:eu-repo/semantics/openAccess; https://spdx.org/licenses/etalab-2.0.html
OpenAccess true
Contact CLADIERE, MATHIEU (AgroParisTech Institut des sciences et des industries du vivant et de l'environnement)
Representation
Resource Type Dataset
Version 1.0
Discipline Chemistry; Agriculture, Forestry, Horticulture, Aquaculture; Agriculture, Forestry, Horticulture, Aquaculture and Veterinary Medicine; Food Safety; Life Sciences; Natural Sciences